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 machine learning team


🇺🇸 Remote Machine learning job: Senior Machine Learning Scientist at Metropolis (Seattle, Washington, United States)

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Senior Machine Learning Scientist at Metropolis United States › Washington › Seattle (Posted Mar 9 2023) Please mention that you found the job at Jobhunt.ai Apply now! Do they allow remote work? Remote work is possible, see the description below for more information. Job description Seattle, WA or Remote The Company Metropolis develops advanced computer vision and machine learning technology that make mobile commerce remarkable. Our platform is already deployed in hundreds of mobility facilities and industries with billions of dollars in opportunity.


20 Soft Skills to Look for in Candidates for your Machine Learning Team

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While education, skills, and experience provide the technical foundation and are essential for a capable machine learning (ML) team, the team will only turn into a strong and successful one when combined with the right soft skills. Education, skills, and experience are very important traits for a capable ML expert. Having a solid educational background in mathematics, computer science, the natural sciences, and statistics provides a strong foundation for understanding the underlying theories and algorithms that drive ML models. In addition, acquiring practical skills through hands-on experience with various programming languages, libraries, and tools is critical for implementing and deploying successful ML solutions. However, the right set of soft skills can transform a team of capable ML experts and turn them into a successful one. These skills complement technical skills.


Remote - Senior Data Engineer - Machine Learning at Aspirion - Columbus, Georgia, United States

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Aspirion is an industry-leading provider of complex claims management services. We specialize in Motor Vehicle Accidents, Worker's Compensation, Veterans Administration and Tricare, Complex Denials, Out-of-State Medicaid, and Eligibility and Enrollment Services. Our employees work in an environment that is both challenging and rewarding. Aspirion helps hospitals and other healthcare providers get claims paid correctly by insurance companies, enabling providers to dedicate more resources to patient care and lowering the financial burden on patients. As a tech-enabled services business, Aspirion is investing heavily to embed user-centric design, automation, and machine learning into Compass, our proprietary internal workflow platform supporting the operations of multiple service lines.


DeepSpeech 0.6: Mozilla's Speech-to-Text Engine Gets Fast, Lean, and Ubiquitous – Mozilla Hacks - the Web developer blog

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The Machine Learning team at Mozilla continues work on DeepSpeech, an automatic speech recognition (ASR) engine which aims to make speech recognition technology and trained models openly available to developers. DeepSpeech is a deep learning-based ASR engine with a simple API. We also provide pre-trained English models. Our latest release, version v0.6, offers the highest quality, most feature-packed model so far. In this overview, we'll show how DeepSpeech can transform your applications by enabling client-side, low-latency, and privacy-preserving speech recognition capabilities.


How to Build a Machine Learning Team When You Are Not Google or Facebook

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By Lukas Biewald, Founder, Weights and Biases; Founder, Figure Eight (formerly known as CrowdFlower). Lately, friends at companies of all sizes and industries have been asking me the same question, "How do I apply machine learning to my business?" These folks know enough to have a sense of good use cases for machine learning. Where everyone gets stuck is actually making it work, hiring people, and making them successful. I'll outline my three main approaches depending on the size of your business.


It's Math, Not Magic: Four Lessons from Building a Machine Learning Team

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Everyone from chief executive officers to product managers to venture capitalists wants to understand machine learning better. They know it has the potential to take their software to the next level. They feel the excitement around it. They've read the TechCrunch or Fortune articles, and they've maybe even done a quick linear regression or two. But the primary issue that many product leaders grapple with when it comes to machine learning is that they want programs that don't just crunch the numbers, but can also think for them.


Machine Learning Engineering Manager - ServiceNow

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ServiceNow is changing the way people work. With a service-orientation toward the activities, tasks and processes that make up day-to-day work life, we help the modern enterprise operate faster and be more scalable than ever before. If you thought you knew about ServiceNow and what we do, take a look again! Our products lines are diverse and robust. The Enterprise Cloud is dynamic, scalable to billions of transactions weekly, and global in scope and size.


Using Machine Learning Agents in a real game: a beginner's guide – Unity Blog

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My name is Alessia Nigretti and I am a Technical Evangelist for Unity. My job is to introduce Unity's new features to developers. My fellow evangelist Ciro Continisio and I developed the first demo game that uses the new Unity Machine Learning Agents system and showed it at DevGamm Minsk 2017. This post is based on our talk and explains what we learned making the demo. At the same time, we invite you to join the ML-Agents Challenge and show off your creative use-cases of the toolkit.


In The Mind of Algorithms: A Conversation with UiPath's Machine Learning Team

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First, he has to know how different algorithms work, and why they work, so that he knows what tool to choose for the job. Second, he has to figure out how to make the best use of domain knowledge, and give possible "shortcuts" to the Neural Net--this can turn potentially unworkable problems feasible, because it heavily trims down the "number" of bad tries. This is both a problem understanding challenge, and also a technical challenge--you have to write good code for it.


Software Engineer / Research Scientist - Machine Learning Team

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Software Engineer / Research Scientist - Machine Learning Team New York Posted Jan 20, 2017 - Requisition No. 56583 Apply Now News stories move the financial markets. In addition to being the second largest producer of news, Bloomberg ingests more than 70,000 different news feeds to help our clients stay in the know. This data would be unmanageable without our help. Bloomberg's Machine Learning Group - a group of specialists, researchers and software engineers who have a passion for solving complex problems. On the Pattern Recognition team, we are building machine learning models for predicting the impact of news stories on company prices, unique recommendation systems and various other problems involving text and time series.